Modeling Extreme Events in Time Series Prediction

Daizong Ding, Mi Zhang, Xudong Pan, Min Yang, Xiangnan He
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引用次数: 88

Abstract

Time series prediction is an intensively studied topic in data mining. In spite of the considerable improvements, recent deep learning-based methods overlook the existence of extreme events, which result in weak performance when applying them to real time series. Extreme events are rare and random, but do play a critical role in many real applications, such as the forecasting of financial crisis and natural disasters. In this paper, we explore the central theme of improving the ability of deep learning on modeling extreme events for time series prediction. Through the lens of formal analysis, we first find that the weakness of deep learning methods roots in the conventional form of quadratic loss. To address this issue, we take inspirations from the Extreme Value Theory, developing a new form of loss called Extreme Value Loss (EVL) for detecting the future occurrence of extreme events. Furthermore, we propose to employ Memory Network in order to memorize extreme events in historical records.By incorporating EVL with an adapted memory network module, we achieve an end-to-end framework for time series prediction with extreme events. Through extensive experiments on synthetic data and two real datasets of stock and climate, we empirically validate the effectiveness of our framework. Besides, we also provide a proper choice for hyper-parameters in our proposed framework by conducting several additional experiments.
时间序列预测中的极端事件建模
时间序列预测是数据挖掘中一个被广泛研究的课题。尽管有了很大的改进,但最近基于深度学习的方法忽略了极端事件的存在,这导致在将它们应用于实时时间序列时性能较差。极端事件是罕见和随机的,但在许多实际应用中确实发挥着关键作用,例如预测金融危机和自然灾害。在本文中,我们探讨了提高深度学习在时间序列预测极端事件建模中的能力的中心主题。通过形式分析的镜头,我们首先发现深度学习方法的弱点根源于传统的二次损失形式。为了解决这个问题,我们从极值理论中获得灵感,开发了一种新的损失形式,称为极值损失(EVL),用于检测极端事件的未来发生。此外,我们提出利用记忆网络来记忆历史记录中的极端事件。通过将EVL与自适应记忆网络模块相结合,我们实现了具有极端事件的时间序列预测的端到端框架。通过对合成数据和两个真实数据集的大量实验,我们从经验上验证了我们的框架的有效性。此外,我们还通过几个额外的实验为我们提出的框架中的超参数提供了适当的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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